| lmeresampler | R Documentation | 
The lme4 and nlme packages have made fitting nested 
linear mixed-effects (LME) models quite easy. Using the the 
functionality of these packages we can easily use maximum 
likelihood or restricted maximum likelihood to fit a 
model and conduct inference using our parametric toolkit. 
In practice, the assumptions of our model are often violated 
to such a degree that leads to biased estimators and 
incorrect standard errors. In these situations, resampling 
methods such as the bootstrap can be used to obtain consistent 
estimators and standard errors for inference. 
lmeresampler provides an easy way to bootstrap nested 
linear-mixed effects models using either fit using either lme4 or 
nlme.
A variety of bootstrap procedures are available:
 the parametric bootstrap: parametric_bootstrap
 the residual bootstrap: resid_bootstrap
 the cases (i.e. non-parametric) bootstrap: case_bootstrap
 the random effects block (REB) bootstrap: reb_bootstrap
 the Wild bootstrap: wild_bootstrap
In addition to the individual bootstrap functions, lmeresampler provides
a unified interface to bootstrapping LME models in its  bootstrap function.
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